Sulzer Schmid boosts wind turbine maintenance efficiency with AI-powered anomaly detection

Sulzer Schmid, a leader in energy services, has transformed wind turbine rotor blade inspections with an AI-driven solution. Using autonomous drones and a cloud-based platform, the company automated and enhanced blade image acquisition and analysis, delivering faster, more accurate results for wind asset owners. The 3DX Blade Platform integrates Microsoft Azure and Power BI, consolidating inspection data and surfacing insights through intuitive dashboards. By implementing Azure Machine Learning Studio with AutoML, Sulzer Schmid automated machine learning model building, improving detection precision and operational speed. The solution identifies over 99% of critical blade damages automatically, drastically reducing manual review workloads. Future advancements include AI-driven damage classification and repair recommendations, supported by continuous data collection and Microsoft’s expert guidance. The partnership with Microsoft provides Sulzer Schmid with ongoing access to AI specialists and support as part of the Microsoft for Startups Program, ensuring the inspection technology stays at the cutting edge. Additionally, in-house blade experts review AI results, guaranteeing data quality and accuracy. The solution aims to optimize maintenance planning, minimize turbine downtime, and maximize renewable energy production, setting a new standard for rotor blade inspection efficiency.

Organization
Sulzer Schmid
Location
Switzerland
Published
March 2024

Reported outcomes

99%

quantified impactOther quantified impact

Strategic outcomes

Scale & capacityReduced manual inspection workloadBetter decisions & insightImproved maintenance decision-makingCustomer experience & trustDelivered faster, more accurate inspection results

Primary read

Use case focus

Showing 3 of 3

  • 1Automated AI-Based Wind Turbine Blade Inspection
  • 2Critical Damage Detection and Reporting
  • 3Predictive Maintenance Planning for Wind Turbines
  • Manual rotor blade inspections were slow and labor-intensive.
  • Wind asset owners needed quicker, more accurate detection of critical damages to minimize downtime.
  • Seasonal repair schedules required timely inspection results.
  • Gaining actionable, reliable insights from vast image datasets was challenging.
  • Deployed autonomous drones to capture high-quality blade images.
  • Automated inspection data upload and analytics with a cloud-based platform (3DX Blade Platform).
  • Integrated Microsoft Azure for cloud infrastructure and Power BI for dashboarding.
  • Used Azure Machine Learning Studio with AutoML for AI-powered damage detection models, improving speed and accuracy.
  • Combined AI with expert manual reviews for optimal annotation quality.
  • Achieved over 99% automatic detection of critical blade damages.
  • Significantly reduced manual data review workload and time.
  • Improved operational efficiency and maintenance decision-making.
  • Enhanced data quality and actionable insights for wind turbine management.
Architecture

Autonomous drones collect high-resolution images of wind turbine blades. These images are securely uploaded to the cloud-based 3DX Blade Platform, which uses Microsoft Azure for scalable data storage and computation. Azure Machine Learning Studio AutoML automates the development and deployment of AI models that detect blade anomalies. Results are visualized in Power BI dashboards. Final annotation quality is assured through expert human review, ensuring precision in maintenance recommendations.

Sources & evidence1
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